2021
DOI: 10.1609/hcomp.v9i1.18949
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Enhancing Image Classification Capabilities of Crowdsourcing-Based Methods through Expanded Input Elicitation

Abstract: This study investigates how different forms of input elicitation obtained from crowdsourcing can be utilized to improve the quality of inferred labels for image classification tasks, where an image must be labeled as either positive or negative depending on the presence/absence of a specified object. Three types of input elicitation methods are tested: binary classification (positive or negative); level of confidence in binary response (on a scale from 0-100%); and what participants believe the majority of the… Show more

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“…To further strengthen this Frontiers Research Topic, we partnered with AAAI HCOMP to invite submissions; papers accepted to HCOMP 2021 were offered a streamlined process for publication in this topic (e.g., maintaining the same reviewers when possible). We accepted four such submissions that extend earlier HCOMP 2021 papers (Samiotis et al, 2021;Welty et al, 2021;Yamanaka, 2021;Yasmin et al, 2021).…”
Section: Partnership With Aaai Hcompmentioning
confidence: 99%
“…To further strengthen this Frontiers Research Topic, we partnered with AAAI HCOMP to invite submissions; papers accepted to HCOMP 2021 were offered a streamlined process for publication in this topic (e.g., maintaining the same reviewers when possible). We accepted four such submissions that extend earlier HCOMP 2021 papers (Samiotis et al, 2021;Welty et al, 2021;Yamanaka, 2021;Yasmin et al, 2021).…”
Section: Partnership With Aaai Hcompmentioning
confidence: 99%